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计算机应用 2009
Text clustering based on genetic fuzzy C-means algorithm
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Abstract:
A text clustering method based on genetic fuzzy c-means algorithm was proposed. At first, latent semantic index was used to reduce the dimension of text feature and then the number of text class was obtained through analyzing the validity of clustering. At last, genetic FCM algorithm was used to cluster the text. The proposed method overcomes the flaw of FCM algorithm which may converge to local optimum, and it resolves the problem of FCM algorithm which is sensitive to the initialized value of cluster center. The experimental results show that the proposed method has better clustering effect.